Generalized Fiducial Inference on Differentiable Manifolds

09/30/2022
by   Alexander C Murph, et al.
0

We introduce a novel approach to inference on parameters that take values in a Riemannian manifold embedded in a Euclidean space. Parameter spaces of this form are ubiquitous across many fields, including chemistry, physics, computer graphics, and geology. This new approach uses generalized fiducial inference to obtain a posterior-like distribution on the manifold, without needing to know a parameterization that maps the constrained space to an unconstrained Euclidean space. The proposed methodology, called the constrained generalized fiducial distribution (CGFD), is obtained by using mathematical tools from Riemannian geometry. A Bernstein-von Mises-type result for the CGFD, which provides intuition for how the desirable asymptotic qualities of the unconstrained generalized fiducial distribution are inherited by the CGFD, is provided. To demonstrate the practical use of the CGFD, we provide three proof-of-concept examples: inference for data from a multivariate normal density with the mean parameters on a sphere, a linear logspline density estimation problem, and a reimagined approach to the AR(1) model, all of which exhibit desirable coverages via simulation. We discuss two Markov chain Monte Carlo algorithms for the exploration of these constrained parameter spaces and adapt them for the CGFD.

READ FULL TEXT
research
09/04/2020

Density estimation and modeling on symmetric spaces

In many applications, data and/or parameters are supported on non-Euclid...
research
12/05/2017

Posterior Integration on a Riemannian Manifold

The geodesic Markov chain Monte Carlo method and its variants enable com...
research
10/05/2018

Random orthogonal matrices and the Cayley transform

Random orthogonal matrices play an important role in probability and sta...
research
12/11/2018

Blended smoothing splines on Riemannian manifolds

We present a method to compute a fitting curve B to a set of data points...
research
12/14/2018

Constrained Bayesian Inference through Posterior Projections

In a broad variety of settings, prior information takes the form of para...
research
10/15/2020

Magnetic Manifold Hamiltonian Monte Carlo

Markov chain Monte Carlo (MCMC) algorithms offer various strategies for ...
research
12/05/2017

Posterior Integration on an Embedded Riemannian Manifold

This note extends the posterior integration method of Oates et al. (2016...

Please sign up or login with your details

Forgot password? Click here to reset